Accelerated Design and Deployment of Low-Carbon Concrete for Data Centers
Xiou Ge, Richard T. Goodwin, Haizi Yu, Pablo Romero, Omar Abdelrahman,, Amruta Sudhalkar, Julius Kusuma, Ryan Cialdella, Nishant Garg, and Lav R., Varshney

TL;DR
This paper presents a novel AI-driven approach using CVAEs to design low-carbon concrete formulas that meet engineering standards, with successful laboratory and real-world deployment in data center construction.
Contribution
It introduces a semi-supervised AI model to efficiently discover environmentally friendly concrete formulas that satisfy strength requirements, demonstrated through lab and field experiments.
Findings
AI-designed concrete reduces carbon footprint significantly.
Laboratory tests confirm strength requirements are exceeded.
Field deployment in a data center validates real-world applicability.
Abstract
Concrete is the most widely used engineered material in the world with more than 10 billion tons produced annually. Unfortunately, with that scale comes a significant burden in terms of energy, water, and release of greenhouse gases and other pollutants; indeed 8% of worldwide carbon emissions are attributed to the production of cement, a key ingredient in concrete. As such, there is interest in creating concrete formulas that minimize this environmental burden, while satisfying engineering performance requirements including compressive strength. Specifically for computing, concrete is a major ingredient in the construction of data centers. In this work, we use conditional variational autoencoders (CVAEs), a type of semi-supervised generative artificial intelligence (AI) model, to discover concrete formulas with desired properties. Our model is trained just using a small open dataset…
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Taxonomy
TopicsBIM and Construction Integration · Infrastructure Maintenance and Monitoring · Innovations in Concrete and Construction Materials
